Pick one job
Start with one repeatable problem: documents, client intake, support tickets, internal knowledge, code review, or another process that eats staff time.
How it works
Foundry sits beside your existing tools, helps with the first pass, keeps a record, and queues important outputs for your team to check.
Start with one repeatable problem: documents, client intake, support tickets, internal knowledge, code review, or another process that eats staff time.
We look at the data, who should see it, where it currently lives, and which steps must be checked by a person.
Foundry runs on Apple hardware controlled by your business. We help decide whether your current hardware is suitable or what you would need.
We map what should happen first, second, and third: read this, extract that, search this folder, draft this note, flag this exception, stop here for review.
Simple jobs get a fast tool. Document jobs get document tools. Careful summaries and drafts get a stronger AI step. The buyer does not need to manage this; Foundry is configured around the workflow.
Foundry can keep a practical trail of what arrived, what it read, what it produced, what it flagged, and what is waiting for approval.
Foundry prepares the work. A person approves client messages, legal or compliance-sensitive outputs, document results, escalations, and important decisions.
As better tools become available, parts of the setup can be upgraded without starting the whole process again.
For agreed workflows, the AI work can run inside your controlled business environment. Your existing cloud tools may still be used for normal business tasks.
Right tool, right step
A scanned document, a support ticket, an internal search, and a careful client reply are different jobs. Foundry can use different local tools for different parts of the process.
| Part of the job | Plain-English tool | Why it helps |
|---|---|---|
| Sort incoming work | A fast sorter | Keeps the queue moving |
| Read scanned pages | A document-reading tool | Helps capture fields from files |
| Search internal sources | A source search tool | Keeps answers tied to your own material |
| Draft a careful summary | A stronger AI drafting step | Gives your team a better first draft to review |
| Approve the result | Your team | Keeps judgement with the business |
Foundry is useful because it fits the tool to the job, then stops important outputs for review.
Move the sensitive AI work where it makes sense. Do not rebuild everything that already works.
| Phase | What happens | Typical time |
|---|---|---|
| Fit Review | We review the job, data sensitivity, volume, tools, approval needs, current AI spend, and supplier concerns. | 30–60 minutes |
| Recommendation | You get a practical yes/no and the best first job to test. | After review |
| Boundary design | We define what moves into the private setup, what stays cloud, what must be recorded, and where approval steps sit. | Scope-dependent |
| Setup | Foundry is installed and configured on suitable Apple hardware. | 1–2 days for supported setups |
| Testing | Sample documents, tickets, queries, or code changes run through the workflow with review checks. | Included in setup |
| Handover | Your team learns the review queue, visible records, exceptions, and support route. | 1–2 hours |
| Live | Foundry runs the agreed job with approval steps for important outputs. | Ongoing |
Timelines depend on access, hardware readiness, workflow complexity, data quality, security requirements, and integration scope.
This record can help with internal checks and governance. It does not replace legal advice, data-protection work, contracts, policies, security controls, or professional judgement.